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Unsupervised feature learning using deep learning approaches and applying on the image matching context

机译:无监督的特征学习使用深度学习方法和应用图像匹配上下文

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Image matching is quite challenging task to identify the matching images in the data. There are multiple methods in computer vision techniques such as histogram based algorithms, color/edge based algorithms, textual based features, SIFT and Surf algorithms which will help to identify the similar images. Here in our paper we are addressing an Industrial problem to provide the better solution where US multinational courier delivery services facing challenges in delivering the products where labels/tags and barcodes of the products are missed while delivering to the customers and customer comes with the product image and with some information about the product. The job is to map the user/customer product information with the existing missed products in the database in order to deliver them. This entire process currently goes manual and it takes lot of time to address the missed products. The advances in computer science and availability of GPU machines, the problem will be addressed and solution can be automated using deep learning approaches. The paper describes the solution for matching the images accurately and comparing the solution with the existing classical computer vision algorithms.
机译:图像匹配是非常具有挑战性的任务,可以识别数据中的匹配图像。计算机视觉技术中有多种方法,例如基于直方图的基于直方图的算法,颜色/边缘的算法,基于文本的特征,SIFT和SURF算法,它将有助于识别类似图像。在我们的论文中,我们正在解决一个工业问题,以提供更好的解决方案,在提供挑战时提供更好的解决方案,在提供产品和客户的同时错过了产品的标签/标签和条形码,附带产品图片以及有关产品的一些信息。该作业是将用户/客户产品信息与数据库中的现有错过产品映射以便提供它们。整个过程目前是手动的,它需要花费大量时间来解决未错过的产品。计算机科学和GPU机器的可用性的进步,问题将解决,解决方案可以使用深度学习方法自动化。本文介绍了用于准确匹配图像的解决方案并将解决方案与现有的经典计算机视觉算法进行比较。

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